We propose and implement a nonlinear Verification and Validation (V&V) methodology to test two fitting procedures for the log-periodic power law model (LPPL), a model that has diverse applications across data analysis, but known estimation issues. Prior studies have focused on ex-post analyses of rare events: Earthquakes, glacial break-off events, and financial crashes. Or, on non-dynamical simulations such as additive noise or resampling. Our results reject an estimation scheme that pre-conditions observed data by fitting and removing an exponential trend. We validate a subordinated algorithm, and confirm that it passes Feigenbaum's criticism, which articulates a broad hurdle for ex-post statistical learning from rare events.
翻译:我们提出并实施一种非线性核实和验证(V&V)方法,测试日志定期权力法模型(LPPL)的两个适当程序,该模型在数据分析中具有多种应用,但已知的估计问题。先前的研究侧重于罕见事件的事后分析:地震、冰川断裂事件和金融崩溃。或者,非动态模拟,如添加噪音或再抽样。我们的结果否定了一种预设条件,即通过安装和消除指数趋势来观察数据的估算计划。我们验证了一种从属算法,并确认它克服了Feigenbaum的批评,这为从稀有事件进行事后统计学习设置了广泛的障碍。